  | 
                | 
                | 
            
            
              Why Should You Use Nonlinear Curve Fitting? 
                  Nonlinear curve fitting is by far the most accurate way to   reduce noise and quantify peaks. Many instruments come with software that only   approximates the fitting process by simply integrating the raw data numerically.   When there are shouldered or hidden peaks, a lot of noise or a significant   background signal, this can lead to the wrong results. (For example, a   spectroscopy data set may appear to have a peak with a 'raw' amplitude of 4,000   units -- but may have a shoulder peak that distorts the amplitude by 1,500   units! This would be a significant error.)  
                       
                    PeakFit helps you separate   overlapping peaks by statistically fitting numerous peak functions to one data   set, which can help you find even the most obscure patterns in your data. The   background can be fit as a separate polynomial, exponential, logarithmic,   hyperbolic or power model. This fitted baseline is then subtracted before peak   characterization data (such as areas) is calculated, which gives much more   accurate results. And any noise (like you get with electrophoretic gels or Raman   spectra) that might bias raw data calculations is filtered simply by the   nonlinear curve fitting process. Nonlinear curve fitting is essential for   accurate peak analysis and accurate research. 
                PeakFit Offers Sophisticated Data   Manipulation 
                       
                  | 
            
            
              With PeakFit's visual FFT filter, you can inspect your data   stream in the Fourier domain and zero higher frequency points -- and see your   results immediately in the time-domain. This smoothing technique allows for   superb noise reduction while maintaining the integrity of the original data   stream. PeakFit also includes an automated FFT method as well as Gaussian   convolution, the Savitzky-Golay method and the Loess algorithm for smoothing. AI   Experts throughout the smoothing options and other parts of the program   automatically help you to set many adjustments. And, PeakFit even has a digital   data enhancer, which helps to analyze your sparse data. Only PeakFit offers so   many different methods of data manipulation.  | 
                | 
                
                   
                  Click to View Larger Image   | 
            
            
              |   | 
            
            
              Highly Advanced Baseline   Subtraction 
                  
  | 
            
            
              PeakFit's non-parametric baseline fitting routine   easily removes the complex background of a DNA electrophoresis sample. PeakFit   can also subtract eight other built-in baseline equations or it can subtract any   baseline you've developed and stored in a file.  | 
                | 
                
                   
                  Click to View Larger Image  | 
            
            
              |   | 
            
            
              | Full Graphical Placement of   Peaks | 
            
            
              |   | 
            
            
              If PeakFit's auto-placement features fail on extremely   complicated or noisy data, you can place and fit peaks graphically with only a   few mouse clicks. Each placed function has "anchors" that adjust even the most   highly complex functions, automatically changing that function's specific   numeric parameters. PeakFit's graphical placement options handle even the most   complex peaks as smoothly as Gaussians.  | 
            
            
              |   | 
            
            
              | Publication-Quality Graphs and Data   Output | 
            
            
              |   | 
            
            
              Every publication-quality graph (see above) was created   using PeakFit's built-in graphic engine -- which now includes print preview and   extensive file and clipboard export options. The numerical output is   customizable so that you see only the content you want.  | 
            
            
              |   | 
            
            
              | PeakFit Saves You Precious Research   Time | 
            
            
              |   | 
            
            
              For most data sets, PeakFit does all the work for you.   What once took hours now takes minutes – with only a few clicks of the mouse!   It’s so easy that novices can learn how to use PeakFit in no time. And if you   have extremely complex or noisy data sets, the sophistication and depth of   PeakFit’s data manipulation techniques is unequaled.  | 
            
            
              |   | 
            
            
              | PeakFit Automatically Places Peaks in Three   Ways | 
            
            
              |   | 
            
            
              PeakFit uses three procedures to automatically place   hidden peaks; while each is a strong solution, one method may work better with   some data sets than the others.
                
              
               
                - 
                  
The Residuals procedure initially   places peaks by finding local maxima in a smoothed data stream. Hidden peaks are   then optionally added where peaks in the residuals occur. 
                 - 
                          
The Second Derivative procedure   searches for local minima within a smoothed second derivative data stream. These   local minima often reveal hidden peaks. 
                 - 
                          
The Deconvolution procedure uses a   Gaussian response function with a Fourier deconvolution/ filtering algorithm. A   successfully deconvolved spec-trum will consist of “sharpened” peaks of   equivalent area. The goal is to enhance the hidden peaks so that each represents   a local maximum. 
                 
                | 
                | 
                
                       
                      Click to View Larger Image 
                       
                        
                       
                  Click to View Larger Image 
  |